6533b7d0fe1ef96bd125a19a
RESEARCH PRODUCT
Vegetation dynamics from NDVI time series analysis using the wavelet transform
Beatriz MartínezMaría Amparo Gilabertsubject
Advanced very-high-resolution radiometerSoil ScienceWavelet transformGeologyVegetationLand coverSeasonalitymedicine.diseaseNormalized Difference Vegetation IndexWaveletmedicineComputers in Earth SciencesTime seriesRemote sensingMathematicsdescription
A multi-resolution analysis (MRA) based on the wavelet transform (WT) has been implemented to study NDVI time series. These series, which are non-stationary and present short-term, seasonal and long-term variations, can be decomposed using this MRA as a sum of series associated with different temporal scales. The main focus of the paper is to check the potential of this MRA to capture and describe both intra- and inter-annual changes in the data, i.e., to discuss the ability of the proposed procedure to monitor vegetation dynamics at regional scale. Our approach concentrates on what wavelet analysis can tell us about a NDVI time series. On the one hand, the intra-annual series, linked to the seasonality, has been used to estimate different key features related to the vegetation phenology, which depend on the vegetation cover type. On the other hand, the inter-annual series has been used to identify the trend, which is related to land-cover changes, and a Mann-Kendall test has been applied to confirm the significance of the observed trends. NDVI images from the MEDOKADS (Mediterranean Extended Daily One-km AVHRR Data Set) imagery series over Spain are processed according to a per-pixel strategy for this study. Results show that the wavelet analysis provides relevant information about vegetation dynamics at regional scale, such as the mean and minimum NDVI value, the amplitude of the phenological cycle, the timing of the maximum NDVI and the magnitude of the land-cover change. The latter, in combination with precipitation data, has been used to interpret the observed land-cover changes and identify those subtle changes associated to land degradation.
year | journal | country | edition | language |
---|---|---|---|---|
2009-09-01 | Remote Sensing of Environment |